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A reactive, scalable, and transferable model for molecular energies from a neural network approach based on local information
JournalArticle (Originalarbeit in einer wissenschaftlichen Zeitschrift)
 
ID 4527446
Author(s) Unke, Oliver T.; Meuwly, Markus
Author(s) at UniBasel Meuwly, Markus
Year 2018
Title A reactive, scalable, and transferable model for molecular energies from a neural network approach based on local information
Journal Journal of Chemical Physics
Volume 148
Number 24
Pages / Article-Number 241708
Abstract Despite the ever-increasing computer power, accurate ab initio calculations for large systems (thousands to millions of atoms) remain infeasible. Instead, approximate empirical energy functions are used. Most current approaches are either transferable between different chemical systems, but not particularly accurate, or they are fine-tuned to a specific application. In this work, a data-driven method to construct a potential energy surface based on neural networks is presented. Since the total energy is decomposed into local atomic contributions, the evaluation is easily parallelizable and scales linearly with system size. With prediction errors below 0.5 kcal mol −1 for both unknown molecules and configurations, the method is accurate across chemical and configurational space, which is demonstrated by applying it to datasets from nonreactive and reactive molecular dynamics simulations and a diverse database of equilibrium structures. The possibility to use small molecules as reference data to predict larger structures is also explored. Since the descriptor only uses local information, high-level ab initio methods, which are computationally too expensive for large molecules, become feasible for generating the necessary reference data used to train the neural network.
Publisher AIP Publishing
ISSN/ISBN 0021-9606 ; 1089-7690
edoc-URL https://edoc.unibas.ch/94219/
Full Text on edoc Available
Digital Object Identifier DOI 10.1063/1.5017898
PubMed ID http://www.ncbi.nlm.nih.gov/pubmed/29960298
ISI-Number 000437190300011
Document type (ISI) Journal Article
 
   

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